Estimating time-to-total knee replacement on radiographs and MRI: a multimodal approach using self-supervised deep learning.

Radiology advances Pub Date : 2024-11-15 eCollection Date: 2022-01-01 DOI:10.1093/radadv/umae030
Ozkan Cigdem, Shengjia Chen, Chaojie Zhang, Kyunghyun Cho, Richard Kijowski, Cem M Deniz
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Abstract

Purpose: Accurately predicting the expected duration of time until total knee replacement (time-to-TKR) is crucial for patient management and health care planning. Predicting when surgery may be needed, especially within shorter windows like 3 years, allows clinicians to plan timely interventions and health care systems to allocate resources more effectively. Existing models lack the precision for such time-based predictions. A survival analysis model for predicting time-to-TKR was developed using features from medical images and clinical measurements.

Methods: From the Osteoarthritis Initiative dataset, all knees with clinical variables, MRI scans, radiographs, and quantitative and semiquantitative assessments from images were identified. This resulted in 895 knees that underwent TKR within the 9-year follow-up period, as specified by the Osteoarthritis Initiative study design, and 786 control knees that did not undergo TKR (right-censored, indicating their status beyond the 9-year follow-up is unknown). These knees were used for model training and testing. Additionally, 518 and 164 subjects from the Multi-Center Osteoarthritis Study and internal hospital data were used for external testing, respectively. Deep learning models were utilized to extract features from radiographs and MR scans. Extracted features, clinical variables, and image assessments were used in survival analysis with Lasso Cox feature selection and a random survival forest model to predict time-to-TKR.

Results: The proposed model exhibited strong discrimination power by integrating self-supervised deep learning features with clinical variables (eg, age, body mass index, pain score) and image assessment measurements (eg, Kellgren-Lawrence grade, joint space narrowing, bone marrow lesion size, cartilage morphology) from multiple modalities. The model achieved an area under the curve of 94.5 (95% CI, 94.0-95.1) for predicting the time-to-TKR.

Conclusions: The proposed model demonstrated the potential of self-supervised learning and multimodal data fusion in accurately predicting time-to-TKR that may assist physicians to develop personalize treatment strategies.

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根据射线照片和核磁共振成像估算全膝关节置换术的时间:一种使用自我监督深度学习的多模态方法。
目的:准确预测全膝关节置换术的预期时间(tkr时间)对患者管理和医疗保健计划至关重要。预测何时可能需要手术,特别是在3年这样的较短窗口内,使临床医生能够计划及时的干预措施,使卫生保健系统能够更有效地分配资源。现有的模型缺乏这种基于时间的预测的精度。利用医学图像和临床测量的特征,开发了预测tkr时间的生存分析模型。方法:从骨关节炎倡议数据集中,识别所有具有临床变量、MRI扫描、x线片和图像定量和半定量评估的膝关节。这导致895个膝关节在9年的随访期间接受了TKR,根据骨关节炎倡议研究设计的规定,786个对照膝关节没有接受TKR(右审查,表明9年随访后的状态未知)。这些膝盖用于模型训练和测试。此外,来自多中心骨关节炎研究和医院内部数据的518和164名受试者分别用于外部测试。利用深度学习模型从x光片和MR扫描中提取特征。提取的特征、临床变量和图像评估用于生存分析,使用Lasso Cox特征选择和随机生存森林模型来预测到达tkr的时间。结果:该模型通过将自监督深度学习特征与临床变量(如年龄、体重指数、疼痛评分)和图像评估指标(如Kellgren-Lawrence分级、关节间隙狭窄、骨髓病变大小、软骨形态)的多种方式相结合,显示出较强的识别能力。该模型预测到tkr时间的曲线下面积为94.5 (95% CI, 94.0-95.1)。结论:所提出的模型显示了自我监督学习和多模式数据融合在准确预测tkr时间方面的潜力,这可能有助于医生制定个性化的治疗策略。
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